Summary
- A hands-on data scientist responsible for the full lifecycle of AI metrics—defining, architecting, implementing, and evolving a modern, AI-powered analytics platform and metrics that enables self-service insights across the enterprise.
Position Overview
- The Data Scientist, AI Metrics & Portal is a technical role responsible for owning the full lifecycle of AI Program metrics, including defining, architecting, implementing, operationalizing, and continuously improving a standardized AI metrics capability. This role combines data science, analytics engineering, artificial intelligence, and software development to: (1) Establish AI Program metrics—from conceptual definition through technical implementation and ongoing optimization, and (2) Design, build, and operate a modern, lightweight AI Metrics Hub, leveraging Claude Code and other tech stack tools to rapidly develop and maintain an extensible analytics platform.
- The Data Scientist will define and operationalize standardized AI metrics, architect the supporting data and application layers, implement dynamic visualization and AI-driven querying capabilities, and ensure continuous evolution of the platform to meet business needs.
The role will orchestrate metrics design, platform engineering, and Agile delivery practices to:
- Define, standardize, and govern AI metrics across adoption, utilization, performance, value, cost, risk, and other categories.
- Architect scalable data models and metrics frameworks to ensure consistency and reuse.
- Implement and operationalize metrics pipelines, logic, and computation layers.
- Design and build an analytics platform with AI metrics catalog, standard/pre-configured AI dashboards, and self-service AI dashboards and exploration.
- Implement AI-powered natural language querying and discovery capabilities.
- Maintain and evolve metrics definitions, lineage, and supporting documentation.
- Deliver iteratively using Agile and SAFe methodologies.
- Enable continuous improvement and future integration with enterprise platforms (e.g., Databricks, Collibra).
- This role requires a balance of hands-on implementation, architecture ownership, and delivery leadership, with accountability for the end-to-end lifecycle of AI metrics and insights capabilities.
Required Qualifications
Education & Experience
- Bachelor’s or Master’s degree in Data Science, Computer Science, Analytics, or related field
- 6–10+ years of experience in data science, analytics engineering, or related field
- Proven experience owning the full lifecycle of metrics/KPI frameworks (definition through implementation)
- Experience building data products, analytics platforms, or metrics systems
- Experience working in Agile and/or SAFe environments
Technical Skills
Data & Analytics
- Advanced SQL (complex queries, performance optimization)
- Strong Python for data processing and analytics
- Deep experience in data modeling and KPI design
AI & Machine Learning
- Experience with:
- Large language models (Claude)
- Prompt engineering
- Retrieval-augmented generation (RAG)
- Vector search
- Semantic query systems
Software Development
- Experience building data-driven applications and APIs
- Backend frameworks (Node.js, FastAPI, or similar)
- Experience with front-end frameworks (React preferred)
Data Visualization
- Experience with charting libraries (ECharts, Recharts, D3) or BI tools
- Strong data visualization and UX principles
Data Platforms (Preferred)
- Exposure to Databricks
- Experience with ETL/data pipeline frameworks
Key Competencies
- Strong systems thinking and architecture mindset
- Ability to own and execute across the full lifecycle of solutions
- Capability to translate business needs into scalable metrics and data solutions
- Balance between rapid prototyping and maintainable design
- Strong communication and stakeholder engagement skills
- Ownership mindset and comfort operating in ambiguity
- Continuous learning in AI, analytics, and emerging technologies
Key Responsibilities
1. AI Metrics Lifecycle Ownership (Define → Architect → Implement → Operate → Evolve)
- Own the full lifecycle of AI metrics, including:
- Definition and standardization
- Architectural design
- Technical implementation
- Operational monitoring
- Continuous improvement
- Define and maintain a comprehensive AI metrics framework, including:
- Adoption, utilization, engagement
- Business value and ROI
- Performance and quality
- Risk, compliance, and cost
- Translate business questions into well-defined, implementable metrics and models
2. Metrics Architecture & Standardization
- Architect scalable, reusable metric models, including:
- KPI definitions and calculation logic
- Dimensional structures and aggregation strategies
- Establish and enforce standards for consistency, governance, and reuse
- Ensure metrics are designed for extensibility and enterprise integration
3. Metrics Implementation & Data Engineering
- Design and implement metrics computation pipelines and transformations
- Develop and maintain SQL and Python logic for KPI calculation
- Integrate and normalize data from multiple sources (logs, APIs, databases, surveys, risk reviews, and more)
- Ensure data accuracy, consistency, and performance optimization
- Implement data quality validation and monitoring processes
4. AI Metrics Portal Development
- Architect, build, and maintain the AI Metrics Hub application
- Develop platform components, including:
- Metrics registry (definitions, metadata, ownership)
- Dynamic dashboard and visualization engine
- Config-driven metric execution layer
- Leverage AI-assisted development tools (e.g., Claude Code) to:
- Accelerate development
- Generate reusable assets
- Improve maintainability
- Ensure platform supports rapid iteration and long-term scalability
5. AI / NLP / RAG Integration
- Design and implement natural language interfaces for interacting with metrics
- Build and maintain RAG pipelines leveraging:
- Metric definitions
- Metadata and contextual information
- Develop prompt engineering strategies and query translation logic
- Enable workflows such as:
- “Ask a question → generate query → return visualization and explanation”
- Continuously improve AI output accuracy, usability, and relevance
6. Visualization & Self-Service Enablement
- Design and implement dynamic, user-configurable dashboards and visualizations
- Enable:
- Filtering, slicing, and drill-down analysis
- Customizable chart configurations
- Saved and shareable views
- Deliver export capabilities (PNG, CSV, PDF)
- Ensure intuitive and scalable self-service user experience
7. Documentation & Design Artifacts
- Develop and maintain:
- Metrics design specifications
- Data models and lineage documentation
- Architecture diagrams
- AI workflow and prompt design documentation
- Ensure documentation supports transparency, governance, and reuse
8. Agile / SAFe Delivery Execution
- Lead quarterly SAFe Program Increment (PI) planning participation and execution
- Define and manage:
- Epics, features, and user stories
- Partner with Scrum Master to:
- Plan and execute sprints
- Maintain and prioritize backlog
- Ensure continuous delivery aligned to program priorities and timelines
9. Cross-Functional Collaboration
- Collaborate with:
- AI Program leadership
- Business stakeholders
- Data and platform engineering teams
- Translate requirements into metrics, architecture, and implemented solutions
- Communicate outputs clearly to technical and non-technical audiences
10. Platform Evolution & Integration
- Design and evolve the platform to integrate with:
- Databricks
- Collibra
- Identify opportunities to:
- Enhance automation
- Improve usability
- Increase performance and scalability
- Continuously evaluate and adopt emerging AI and analytics capabilities
11. Governance, Quality & Performance
- Establish and enforce metrics governance processes
- Implement quality controls and validation rules for data and KPIs
- Monitor system usage and platform performance
- Ensure compliance with enterprise data, security, and governance standards